Random matrix theory has played an important role in recent work on statistical network analysis. In this paper, we review recent results on regimes of concentration of random graphs around their expectation, showing that dense graphs concentrate and sparse graphs concentrate after regularization. We also review relevant network models that may be of interest to probabilists considering directions for new random matrix theory developments, and random matrix theory tools that may be of interest to statisticians looking to prove properties of network algorithms. Applications of concentration results to the problem of community detection in networks are discussed in detail
International audienceConsider the following asynchronous, opportunistic communication model over a ...
Consider the following asynchronous, opportunistic communication model over a graph G: in each round...
We consider the problem of detecting a tight community in a sparse random network. This is formalize...
Random matrix theory has played an important role in recent work on statistical network analysis. In...
This paper studies how close random graphs are typically to their expectations. We interpret this qu...
Abstract. We study random graphs with possibly different edge prob-abilities in the challenging spar...
We study random graphs with possibly different edge probabilities in the challenging sparse regime o...
We consider the problem of detecting a tight community in a sparse random network. This is formalize...
International audience—This article proposes a new spectral method for community detection in large ...
In order to understand how the network structure impacts the underlying dynamics, we seek an assortm...
We consider the problem of detecting a tight community in a sparse random network. This is formalize...
Networks arise from modeling complex systems in various fields, such as computer science, social sci...
International audienceCommunities are an important type of structure in networks. Graph filters, suc...
In this dissertation, we present research on several topics in networks including community detectio...
This paper studies a statistical network model generated by a large number of randomly sized overlap...
International audienceConsider the following asynchronous, opportunistic communication model over a ...
Consider the following asynchronous, opportunistic communication model over a graph G: in each round...
We consider the problem of detecting a tight community in a sparse random network. This is formalize...
Random matrix theory has played an important role in recent work on statistical network analysis. In...
This paper studies how close random graphs are typically to their expectations. We interpret this qu...
Abstract. We study random graphs with possibly different edge prob-abilities in the challenging spar...
We study random graphs with possibly different edge probabilities in the challenging sparse regime o...
We consider the problem of detecting a tight community in a sparse random network. This is formalize...
International audience—This article proposes a new spectral method for community detection in large ...
In order to understand how the network structure impacts the underlying dynamics, we seek an assortm...
We consider the problem of detecting a tight community in a sparse random network. This is formalize...
Networks arise from modeling complex systems in various fields, such as computer science, social sci...
International audienceCommunities are an important type of structure in networks. Graph filters, suc...
In this dissertation, we present research on several topics in networks including community detectio...
This paper studies a statistical network model generated by a large number of randomly sized overlap...
International audienceConsider the following asynchronous, opportunistic communication model over a ...
Consider the following asynchronous, opportunistic communication model over a graph G: in each round...
We consider the problem of detecting a tight community in a sparse random network. This is formalize...